dtplyr

Overview

dtplyr provides a data.table backend for dplyr. The goal of dtplyr is to allow you to write dplyr code that is automatically translated to the equivalent, but usually much faster, data.table code.

Compared to the previous release, this version of dtplyr is a complete rewrite that focusses only on lazy evaluation triggered by use of lazy_dt(). This means that no computation is performed until you explicitly request it with as.data.table(), as.data.frame() or as_tibble(). This has a considerable advantage over the previous version (which eagerly evaluated each step) because it allows dtplyr to generate significantly more performant translations. This is a large change that breaks all existing uses of dtplyr. But frankly, dtplyr was pretty useless before because it did such a bad job of generating data.table code. Fortunately few people used it, so a major overhaul was possible.

See vignette("translation") for details of the current translations, and table.express and rqdatatable for related work.

Why is dtplyr slower than data.table?

There are three primary reasons that dtplyr will always be somewhat slower than data.table:

Each dplyr verb must do some work to convert dplyr syntax to data.table syntax. This takes time proportional to the complexity of the input code, not the input data, so should be a negligible overhead for large datasets. Initial benchmarks suggest that the overhead should be under 1ms per dplyr call.

Some data.table expressions have no direct dplyr equivalent. For example, there’s no way to express cross- or rolling-joins with dplyr.

To match dplyr semantics, mutate() does not modify in place by default. This means that most expressions involving mutate() must make a copy that would not be necessary if you were using data.table directly. (You can opt out of this behaviour in lazy_dt() with immutable = FALSE).

Code of Conduct

Please note that the dtplyr project is released with a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.